Brazil Esports Combine

Brazil esports cognitive combine: free reaction time test

Brazil has one of the largest and most passionate FPS communities in global esports. FURIA has carried the Brazilian CS flag internationally, and LOUD won the VALORANT Champions 2022 title, one of the high points of South American esports history. The country's FPS fan base is famous for its volume and presence at live events.

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Brazil players on the leaderboard

Regional filtering coming soon, showing global leaders.

#1NR-CVAQ98 The Carry / ADC
83/100
#2NR-5XY8XP The Fragger
82/100
#3NR-DSF49X The Flex
81/100
#4NR-9XZTQP The Support
81/100
#5NR-WSKGPD The Anchor
79/100
#6NR-GYJTGL The Support
79/100
#7NR-NEFCCA The Flex
79/100
#8NR-P8UP82 The Rifler
78/100
#9NR-VUKJ2Y The Anchor
78/100
#10NR-ZU6GPD The AWPer
78/100

Cognitive profile of Brazilian players

Brazilian tactical shooter tradition rewards aim under pressure, composure in loud stage environments, and recovery from momentum swings.

The Brazilian FPS scene is FPS heavy, so the relevant cognitive dimensions are aim precision, reaction speed, composure under cognitive load, and tilt recovery after a lost round or half. The combine quantifies each of those dimensions independently, so a Brazilian CS2 or VALORANT player can see whether their plateau is mechanical, composure, or post-loss decision degradation.

Qualitative framing based on genre tendencies, not invented regional statistics. Take the combine to contribute to verified regional benchmarks.

Known for

FURIA as the flagship Brazilian CS organisation. LOUD as the winner of VALORANT Champions 2022. MIBR and paiN Gaming as long running Brazilian esports organisations across CS and LoL. A historically loud and sold out crowd at major international events hosted in Sao Paulo and Rio de Janeiro.

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